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Transferring neural network based knowledge into an exemplar-based learner

机译:将基于神经网络的知识转化为基于示例的学习者

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This paper investigates knowledge transfer from a neural network based system into an exemplar-based learning system. In order to examine the possibilities of such transfer, it proposes and evaluates a system that implements a collaborative scheme, where a particular type of neural network induced by the neural system RuleNet is used by an exemplar-based system (NGE) to carry on a learning task. The proposed collaboration between the two learning models implemented as the hybrid system RuleNet → NGE is feasible due to the similarity of the concept description languages employed by both. The paper also describes a few experiments conducted; results show that the RuleNet-NGE collaboration is plausible and, in some domains, it improves the performance of NGE on its own.
机译:本文研究了知识从基于神经网络的系统到基于示例的学习系统的转移。为了检查这种转移的可能性,它提出并评估了一个实施协作方案的系统,其中由神经系统RuleNet诱导的特定类型的神经网络由基于示例的系统(NGE)使用来进行学习任务。由于两者所使用的概念描述语言的相似性,因此在实现为混合系统RuleNet→NGE的两种学习模型之间建议的协作是可行的。本文还描述了一些实验。结果表明,RuleNet-NGE的合作是合理的,并且在某些领域可以单独提高NGE的性能。

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